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An Internet of Things System for Underground Mine Air Quality Pollutant Prediction Based on Azure Machine Learning

机译:基于Azure机器学习的矿山地下空气质量污染物预测物联网系统

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摘要

The implementation of wireless sensor networks (WSNs) for monitoring the complex, dynamic, and harsh environment of underground coal mines (UCMs) is sought around the world to enhance safety. However, previously developed smart systems are limited to monitoring or, in a few cases, can report events. Therefore, this study introduces a reliable, efficient, and cost-effective internet of things (IoT) system for air quality monitoring with newly added features of assessment and pollutant prediction. This system is comprised of sensor modules, communication protocols, and a base station, running Azure Machine Learning (AML) Studio over it. Arduino-based sensor modules with eight different parameters were installed at separate locations of an operational UCM. Based on the sensed data, the proposed system assesses mine air quality in terms of the mine environment index (MEI). Principal component analysis (PCA) identified CH4, CO, SO2, and H2S as the most influencing gases significantly affecting mine air quality. The results of PCA were fed into the ANN model in AML studio, which enabled the prediction of MEI. An optimum number of neurons were determined for both actual input and PCA-based input parameters. The results showed a better performance of the PCA-based ANN for MEI prediction, with R2 and RMSE values of 0.6654 and 0.2104, respectively. Therefore, the proposed Arduino and AML-based system enhances mine environmental safety by quickly assessing and predicting mine air quality.
机译:为了提高安全性,全世界都在寻求实现无线传感器网络(WSN)的监视,以监测地下煤矿(UCM)的复杂,动态和恶劣环境。但是,以前开发的智能系统仅限于监视,或者在少数情况下可以报告事件。因此,本研究引入了一种可靠,高效且具有成本效益的物联网(IoT)系统,用于空气质量监测,并具有新增的评估和污染物预测功能。该系统由传感器模块,通信协议和一个基站组成,在其上运行Azure机器学习(AML)Studio。具有八个不同参数的基于Arduino的传感器模块安装在可操作的UCM的不同位置。基于感测到的数据,建议的系统根据矿山环境指数(MEI)评估矿山空气质量。主成分分析(PCA)确定CH4,CO,SO2和H2S是影响最大的矿井空气质量的最大影响气体。 PCA的结果被输入到AML工作室的ANN模型中,从而可以预测MEI。确定了实际输入和基于PCA的输入参数的最佳神经元数量。结果表明,基于PCA的人工神经网络的MEI预测性能更好,R 2 和RMSE值分别为0.6654和0.2104。因此,建议的基于Arduino和AML的系统可通过快速评估和预测矿井空气质量来提高矿井环境安全性。

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